Thermal conductivity prediction of nanofluids containing CuO nanoparticles by using correlation and artificial neural network

被引:0
作者
Ali Komeilibirjandi
Amir Hossein Raffiee
Akbar Maleki
Mohammad Alhuyi Nazari
Mostafa Safdari Shadloo
机构
[1] Technical University of Munich,Department of Civil, Geo and Environmental Engineering
[2] Purdue University,School of Mechanical Engineering
[3] Shahrood University of Technology,Faculty of Mechanical Engineering
[4] University of Tehran,Department of Renewable Energies, Faculty of New Science and Technologies
[5] CNRS University and INSA of Rouen,CORIA
来源
Journal of Thermal Analysis and Calorimetry | 2020年 / 139卷
关键词
Nanofluid; GMDH; Thermal conductivity; Artificial neural network;
D O I
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中图分类号
学科分类号
摘要
Nanofluids are employed in different thermal devices due to their enhanced thermophysical features which lead to noticeable heat transfer augmentation. One of the major reasons of the heat transfer improvement by using the nanofluids is their increased thermal conductivity. Several methods have been applied to estimate this property of nanofluids such as correlations and artificial neural networks (ANNs). In the present paper, group method of data handling (GMDH) and a mathematical correlation are proposed for forecasting the thermal conductivity of nanofluids containing CuO nanoparticles. The inputs of the both models are the base fluids’ thermal conductivities, concentration, temperature and nanoparticle dimension. Comparison of the forecasted data by these two approaches revealed more favorable performance of GMDH. The values of R-squared in the cases where polynomial and ANN were utilized were 0.9862 and 0.9996, respectively. Moreover, the average absolute relative deviation values were 5.25% and 0.881% for the indicated methods, respectively. According to these statistical values, it is concluded that employing the ANN-based regression leads to more confident model for forecasting the TC of the nanofluids containing CuO nanoparticles.
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页码:2679 / 2689
页数:10
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